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dc.contributor.authorTestas, Dounia-
dc.contributor.authorBoustia, Narhimene. (Promotrice)-
dc.date.accessioned2023-10-03T13:12:58Z-
dc.date.available2023-10-03T13:12:58Z-
dc.date.issued2023-
dc.identifier.urihttps://di.univ-blida.dz/jspui/handle/123456789/25166-
dc.descriptionill., Bibliogr. Cote:ma-004-935fr_FR
dc.description.abstractIn an era where privacy has become increasingly important with the constant informatisation of our day-to-day tasks, the quest to safeguard sensitive and personal information had led to the invention of various methods. Throughout history, the persistent need for secrecy and confidentiality has served as the driving force behind the development of these methods, including encryption techniques, anonymization protocols and secure communication systems. However, a paradoxical phenomenon has emerged as these very tools, which were initially intended to protect privacy, are now being exploited for the malicious purposes they were designed to guard against, one of these techniques is steganography. The misuse of steganography to conceal malware within innocent media files, particularly images, has given rise to a significant cybersecurity concern known as stegomalware or stegware for short. Threat actors have recognized the potential of utilizing this technique to embed and distribute malicious payloads undetected. Consequently, traditional measures and defences are rendered powerless in the face of this sophisticated threat. In this research, we aim to combine Deep Learning, Malware Analysis and Steganalysis techniques in order to put in place a system capable of dissecting and detecting stegware present specifically in PNG images. Our system comprises three main components. Firstly, we implement various steganalysis deep learning models proposed by researchers in the field, making the necessary adjustments and modifications to suit our case of study. The purpose of this first model is to determine the presence of steganography in images. Subsequently, we employ a module to extract hidden data from images identified as steganographic. Lastly, a text-based classification model is utilized to categorize the extracted data as either malicious or clean. The implementation details, rigorous testing, and comprehensive results will be discussed and presented in this study. Keywords: Steganography, Malware, PNG Images, Deep Learning, Malware Analysis, Steganalysis, Detection, Classification.fr_FR
dc.language.isoenfr_FR
dc.publisherUniversité Blida 1fr_FR
dc.subjectSteganographyfr_FR
dc.subjectMalwarefr_FR
dc.subjectPNG Images,fr_FR
dc.subjectDeep Learningfr_FR
dc.subjectMalware Analysisfr_FR
dc.subjectSteganalysisfr_FR
dc.subjectDetectionfr_FR
dc.subjectClassificationfr_FR
dc.titleDetection of Image Stegware Using Deep Learningfr_FR
dc.typeThesisfr_FR
Collection(s) :Mémoires de Master

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